Clinically-relevant cell type cross-talk identified from a human lung tumor microenvironment interactome

Author:

Gentles Andrew JORCID,Hui Angela Bik-Yu,Feng Weiguo,Azizi Armon,Nair Ramesh V.,Knowles David A.,Yu Alice,Jeong Youngtae,Bejnood Alborz,Forgó Erna,Varma Sushama,Xu Yue,Kuong Amanda,Nair Viswam S.,West Rob,van de Rijn Matt,Hoang Chuong D.,Diehn Maximilian,Plevritis Sylvia K.

Abstract

ABSTRACTTumors comprise a complex microenvironment of interacting malignant and stromal cell types. Much of our understanding of the tumor microenvironment comes from in vitro studies isolating the interactions between malignant cells and a single stromal cell type, often along a single pathway. To develop a deeper understanding of the interactions between cells within human lung tumors we performed RNA-seq profiling of flow-sorted malignant cells, endothelial cells, immune cells, fibroblasts, and bulk cells from freshly resected human primary non-small-cell lung tumors. We mapped the cell-specific differential expression of prognostically-associated secreted factors and cell surface genes, and computationally reconstructed cross-talk between these cell types to generate a novel resource we call the Lung Tumor Microenvironment Interactome (LTMI). Using this resource, we identified and validated a prognostically unfavorable influence of Gremlin-1 production by fibroblasts on proliferation of malignant lung adenocarcinoma cells. We also found a prognostically favorable association between infiltration of mast cells and less aggressive tumor cell behavior. These results illustrate the utility of the LTMI as a resource for generating hypotheses concerning tumor-microenvironment interactions that may have prognostic and therapeutic relevance.SummaryRNA-seq profiling of sorted populations from primary lung cancer samples identifies prognostically relevant cross-talk between cell types in the tumor microenvironment.

Publisher

Cold Spring Harbor Laboratory

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